Neural network based recognition of speech using MFCC features

Author Topic: Neural network based recognition of speech using MFCC features  (Read 27 times)

Offline 710001923

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Neural network based recognition of speech using MFCC features
« on: February 23, 2020, 01:17:38 PM »
Analysis and detection of human voice at workplace such as telecommunications, military scenarios, medical scenarios, and law enforcement is important in assessing the ability of the worker and assigning tasks accordingly. This paper represents the results from a preliminary study to recognize the speech from human voice using mel-frequency cepstrum coefficients (MFCC) features. The 16 mel-scale warped cepstral coefficients were used independently for reorganization of speech from two Bangla commands of our native language. Cepstral coefficients for the utterance of `BATI JALAO' (i.e., TURN ON LIGHT) and `PAKHA BONDHO KORO' (i.e., TURN OFF FAN) from a particular speaker under preliminary investigation were used as features in a neural network. Network is trained using the MFCC features of two speakers in such a way that it can recognize only one particular person along with his command and terminate the program for other. Result of matching features in a neural network demonstrates that MFCC features work significantly to recognize speech.

Offline Anhar Sharif

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Re: Neural network based recognition of speech using MFCC features
« Reply #1 on: February 24, 2020, 11:03:57 AM »
 :) :)
Md Anhar Sharif Mollah

Assistant Professor of Finance

Department of Business Administration

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Assistant Proctor

Daffodil International University

Cell: +8801758883609

Offline anwar.swe

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Re: Neural network based recognition of speech using MFCC features
« Reply #2 on: February 28, 2020, 01:22:53 AM »
thank you for sharing this information
Nd. Anwar Hossen
Senior Lecturer
Mentor, IEEE DIU Student Branch
Department of Software Engineering, FSIT
Daffodil International University